학술논문

Benchmarking Performance of Object Detection Under Image Distortions in an Uncontrolled Environment
Document Type
Conference
Source
2022 IEEE International Conference on Image Processing (ICIP) Image Processing (ICIP), 2022 IEEE International Conference on. :2071-2075 Oct, 2022
Subject
Computing and Processing
Signal Processing and Analysis
Training
Performance evaluation
Codes
Databases
Image processing
Object detection
Benchmark testing
Deep learning
Distortion
Robustness
Benchmarking
Language
ISSN
2381-8549
Abstract
The robustness of object detection algorithms plays a prominent role in real-world applications, especially in uncontrolled environments due to distortions during image acquisition. It has been proven that the performance of object detection methods suffers from in-capture distortions. In this study, we present a performance evaluation framework for the state-of-the-art object detection methods using a dedicated dataset containing images with various distortions at different levels of severity. Furthermore, we propose an original strategy of image distortion generation applied to the MS-COCO dataset that combines some local and global distortions to reach much better performances. We have shown that training using the proposed dataset improves the robustness of object detection by 31.5%. Finally, we provide a custom dataset including natural images distorted from MS-COCO to perform a more reliable evaluation of the robustness against common distortions. The database and the generation source codes of the different distortions are made publicly available 1,2 .